A random coefficient autoregressive process for count data based on a generalized thinning operator is presented. Existence and weak stationarity conditions for these models are established. For the particular case of the (generalized) binomial thinning, it is proved that the necessary and sufficient conditions for weak stationarity are the same as those for continuous valued AR(1) processes. These kinds of processes are appropriate for modelling non-linear integer-valued time series. They allow for over-dispersion and are appropriate when including covariates. Model parameters estimators are calculated and their properties studied analytically and/or through simulation
A bivariate autoregressive model for time series of counts is presented. The model is composed of su...
In the presented work the generalized integer valued processes GINAR founded on the Steutel and van ...
In this article, we consider two univariate random environment integer-valued autoregressive process...
Title: Models of integer-valued time series with random coefficients Author: Petra Burdejová Departm...
Title: Models of integer-valued time series with random coefficients Author: Petra Burdejová Departm...
A stationary generalized random coefficient integer auto-regressive model of order 1 (Generalized RC...
In the thesis the thinning operators used for modeling of time series of counts are studied. The mai...
In this thesis models of integer-valued time series based on random sums of random variables are stu...
Bivariate integer-valued time series occur in many areas, such as finance, epidemiology, business et...
Bivariate integer-valued time series occur in many areas, such as finance, epidemiology, business et...
This paper presents a modification and, at the same time, a generalization of the linear first order...
This paper presents a modification and, at the same time, a generalization of the linear first order...
New generalized thinning operators based on Bernoulli sequences of dependent random variables are pr...
The random coefficient integer-valued autoregressive process was recently introduced by Zheng, Basaw...
We introduce a new class of autoregressive models for integer-valued time series using the rounding ...
A bivariate autoregressive model for time series of counts is presented. The model is composed of su...
In the presented work the generalized integer valued processes GINAR founded on the Steutel and van ...
In this article, we consider two univariate random environment integer-valued autoregressive process...
Title: Models of integer-valued time series with random coefficients Author: Petra Burdejová Departm...
Title: Models of integer-valued time series with random coefficients Author: Petra Burdejová Departm...
A stationary generalized random coefficient integer auto-regressive model of order 1 (Generalized RC...
In the thesis the thinning operators used for modeling of time series of counts are studied. The mai...
In this thesis models of integer-valued time series based on random sums of random variables are stu...
Bivariate integer-valued time series occur in many areas, such as finance, epidemiology, business et...
Bivariate integer-valued time series occur in many areas, such as finance, epidemiology, business et...
This paper presents a modification and, at the same time, a generalization of the linear first order...
This paper presents a modification and, at the same time, a generalization of the linear first order...
New generalized thinning operators based on Bernoulli sequences of dependent random variables are pr...
The random coefficient integer-valued autoregressive process was recently introduced by Zheng, Basaw...
We introduce a new class of autoregressive models for integer-valued time series using the rounding ...
A bivariate autoregressive model for time series of counts is presented. The model is composed of su...
In the presented work the generalized integer valued processes GINAR founded on the Steutel and van ...
In this article, we consider two univariate random environment integer-valued autoregressive process...